No-Reference Light Field Image Quality Assessment Using Four-Dimensional Sparse Transform
Light field imaging can simultaneously capture the intensity and direction information of light rays in the real world. Light field image (LFI) with four-dimensional (4D) data suffers from quality degradation in the process of compression, reconstruction and processing. How to evaluate the visual qu...
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Veröffentlicht in: | IEEE transactions on multimedia 2023, Vol.25, p.457-472 |
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Zusammenfassung: | Light field imaging can simultaneously capture the intensity and direction information of light rays in the real world. Light field image (LFI) with four-dimensional (4D) data suffers from quality degradation in the process of compression, reconstruction and processing. How to evaluate the visual quality of LFI is thought-provoking. This paper proposes a no-reference LFI quality assessment metric based on high-dimensional sparse transform. Firstly, LFI's sub-aperture gradient image array (SAGIA), which is still a 4D signal, is generated by high-pass filtering between adjacent SAIs. Then, SAGIA is transformed with 4D discrete cosine transform (4D-DCT). 4D-DCT coefficients of SAGIA can characterize the angular and spatial information of LFI. And the logarithmic amplitudes of the coefficients at the same position of SAGIA?s transformed 4D blocks are averaged as the coefficient energy. Subsequently, the 4D-DCT coefficients of SAGIA are divided into the spatial-angular frequency bands and spatial-angular orientation bands, and the corresponding energy features are extracted by converging the coefficient energy of the same band. In addition, the coefficients' amplitudes at the same position of blocks are fitted by the Weibull distribution. Then, the fitted parameters of each position are concatenated, and cropped with principal component analysis to obtain the compact features. Finally, the extracted features are pooled to predict the visual quality of the distorted LFIs. The experimental results demonstrate that the proposed method is more consistent with the subjective evaluation on three LFI databases, compared with the state-of-the-art image quality assessment methods and LFI quality assessment methods. |
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ISSN: | 1520-9210 1941-0077 |
DOI: | 10.1109/TMM.2021.3127398 |